TL;DR
This paper presents a deep learning model that classifies SDSS galaxy images into 10 detailed classes, achieving high accuracy and automating a complex, time-consuming task in astronomy.
Contribution
It introduces a convolutional neural network capable of classifying galaxies into more than six classes, including subtle features, with improved accuracy and efficiency.
Findings
Achieved 84.73% test accuracy in galaxy classification.
Classified galaxies into 10 detailed classes from the extended Hubble Tuning Fork.
Model reduces classification time compared to previous methods.
Abstract
In recent decades, large-scale sky surveys such as Sloan Digital Sky Survey (SDSS) have resulted in generation of tremendous amount of data. The classification of this enormous amount of data by astronomers is time consuming. To simplify this process, in 2007 a volunteer-based citizen science project called Galaxy Zoo was introduced, which has reduced the time for classification by a good extent. However, in this modern era of deep learning, automating this classification task is highly beneficial as it reduces the time for classification. For the last few years, many algorithms have been proposed which happen to do a phenomenal job in classifying galaxies into multiple classes. But all these algorithms tend to classify galaxies into less than six classes. However, after considering the minute information which we know about galaxies, it is necessary to classify galaxies into more than…
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Taxonomy
MethodsTest · Convolution
